Title of article :
An improved opposition-based Crow Search Algorithm for Data Clustering
Author/Authors :
Jafari Jabal Kandi, Rogayyeh Department of Computer Engineering - Urmia Branch - Islamic Azad University, Urmia, Iran , Soleimanian Gharehchopogh, Farhad Department of Computer Engineering - Urmia Branch - Islamic Azad University, Urmia, Iran
Abstract :
Data clustering is an ideal way of working with a huge amount of data and
looking for a structure in the dataset. In other words, clustering is the classification
of the same data; the similarity among the data in a cluster is maximum and the
similarity among the data in the different clusters is minimal. The innovation of this
paper is a clustering method based on the Crow Search Algorithm (CSA) and
Opposition-based Learning (OBL). The CSA is one of the meat-heuristic algorithms
that is difficult at the exploration and exploitation stage, and thus, the clustering
problem is susceptible to initialization for centrality of the clusters. In the proposed
model, the crows change their position based on the OBL method. The position of
the crows is updated using OBL to find the best position for the cluster. To evaluate
the performance of the proposed model, the experiments were performed on 8
datasets from the UCI repository and compared with seven different clustering
algorithms. The results show that the proposed model is more accurate, more
efficient, and more robust than other clustering algorithms. Also, the convergence of
the proposed model is better than other algorithms.
Farsi abstract :
فاقد چكيده فارسي
Keywords :
Data Clustering , Crow Search Algorithm , Opposition-based Learning , Centrality
Journal title :
Journal of Advances in Computer Research